US11801003B2 - Estimating the magnetic field at distances from direct measurements to enable fine sensors to measure the magnetic field from the brain using a neural detection system - Google Patents
Estimating the magnetic field at distances from direct measurements to enable fine sensors to measure the magnetic field from the brain using a neural detection system Download PDFInfo
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- US11801003B2 US11801003B2 US17/160,152 US202117160152A US11801003B2 US 11801003 B2 US11801003 B2 US 11801003B2 US 202117160152 A US202117160152 A US 202117160152A US 11801003 B2 US11801003 B2 US 11801003B2
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- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B5/00—Measuring for diagnostic purposes; Identification of persons
- A61B5/24—Detecting, measuring or recording bioelectric or biomagnetic signals of the body or parts thereof
- A61B5/242—Detecting biomagnetic fields, e.g. magnetic fields produced by bioelectric currents
- A61B5/245—Detecting biomagnetic fields, e.g. magnetic fields produced by bioelectric currents specially adapted for magnetoencephalographic [MEG] signals
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- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B5/00—Measuring for diagnostic purposes; Identification of persons
- A61B5/24—Detecting, measuring or recording bioelectric or biomagnetic signals of the body or parts thereof
- A61B5/242—Detecting biomagnetic fields, e.g. magnetic fields produced by bioelectric currents
- A61B5/248—Detecting biomagnetic fields, e.g. magnetic fields produced by bioelectric currents specially adapted for magnetoneurographic [MNG] signals, e.g. magnetospinographic [MSG] signals
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- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B5/00—Measuring for diagnostic purposes; Identification of persons
- A61B5/68—Arrangements of detecting, measuring or recording means, e.g. sensors, in relation to patient
- A61B5/6801—Arrangements of detecting, measuring or recording means, e.g. sensors, in relation to patient specially adapted to be attached to or worn on the body surface
- A61B5/6802—Sensor mounted on worn items
- A61B5/6803—Head-worn items, e.g. helmets, masks, headphones or goggles
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- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B5/00—Measuring for diagnostic purposes; Identification of persons
- A61B5/72—Signal processing specially adapted for physiological signals or for diagnostic purposes
- A61B5/7203—Signal processing specially adapted for physiological signals or for diagnostic purposes for noise prevention, reduction or removal
- A61B5/7207—Signal processing specially adapted for physiological signals or for diagnostic purposes for noise prevention, reduction or removal of noise induced by motion artifacts
- A61B5/7214—Signal processing specially adapted for physiological signals or for diagnostic purposes for noise prevention, reduction or removal of noise induced by motion artifacts using signal cancellation, e.g. based on input of two identical physiological sensors spaced apart, or based on two signals derived from the same sensor, for different optical wavelengths
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- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B2562/00—Details of sensors; Constructional details of sensor housings or probes; Accessories for sensors
- A61B2562/02—Details of sensors specially adapted for in-vivo measurements
- A61B2562/0223—Magnetic field sensors
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- A—HUMAN NECESSITIES
- A61—MEDICAL OR VETERINARY SCIENCE; HYGIENE
- A61B—DIAGNOSIS; SURGERY; IDENTIFICATION
- A61B2562/00—Details of sensors; Constructional details of sensor housings or probes; Accessories for sensors
- A61B2562/04—Arrangements of multiple sensors of the same type
- A61B2562/046—Arrangements of multiple sensors of the same type in a matrix array
Definitions
- the present inventions relate to methods and systems for non-invasive measurements from the human body, and in particular, methods and systems related to detecting physiological activity from the human brain, animal brain, and/or peripheral nerves.
- Measuring neural activity in the brain is useful for medical diagnostics, neuromodulation therapies, neuroengineering, and brain-computer interfacing.
- Conventional methods for measuring neural activity in the brain include X-Ray Computed Tomography (CT) scans, positron emission tomography (PET), functional magnetic resonance imaging (fMRI), or other methods that are large, expensive, require dedicated rooms in hospitals and clinics, and are not wearable or convenient to use.
- CT X-Ray Computed Tomography
- PET positron emission tomography
- fMRI functional magnetic resonance imaging
- MEG magnetoencephalography
- BCI brain-computer interface
- the magnetic fields produced by the brain are small, and they are smaller still by the time they propagate out past the skull and the skin surface of the head.
- the magnetic field emitted from various outside magnetic sources in the environment including from global sources, such as the Earth's magnetic field, and from localized sources, such as electrical outlets and sockets, electrical wires or connections in the wall, and everyday electrical equipment in a home, office, or laboratory setting, far exceed the strength of the magnetic signals generated in the brain by many orders of magnitude, and has a distribution in space and time that is not known a-priori.
- SQUID Superconductive Quantum Interference Device
- 5 ⁇ 10 ⁇ 18 Tesla a Superconductive Quantum Interference Device
- 10 ⁇ 9 to 10 ⁇ 6 Tesla a Superconductive Quantum Interference Device
- SQUIDs rely on superconducting loops, and thus require cryogenic cooling, which may make it prohibitively costly and too large to be incorporated into a wearable or portable form factor.
- neural activity measurement systems that utilize SQUIDs may not be appropriate for BCI applications.
- Optically pumped magnetometers have emerged as a viable and wearable alternative to cryogenic, superconducting, SQUID-based MEG systems, and have an advantage of obviating the need for cryogenic cooling, and as a result, may be flexibly placed on any part of the body, including around the head, which is especially important for BCI applications. Because cryogenic cooling is not required, OPMs may be placed within millimeters of the scalp, thereby enabling measurement of a larger signal from the brain (brain signals dissipate with distance), especially for sources of magnetic signals at shallow depths beneath the skull, as well as providing consistency across different head shapes and sizes.
- OPMs optically pump a sample (usually a vapor formed of one of the alkali metals (e.g., rubidium, cesium, or potassium) due to their simple atomic structure, low melting point, and ease of pumping with readily available lasers) with circularly polarized light at a precisely defined frequency, thereby transferring polarized light to the vapor, and producing a large macroscopic polarization in the vapor in the direction of the light (i.e., the alkali metal atoms in the vapor will all have spins that are oriented in the direction of the light) that induces a magnetically sensitive state in the vapor.
- a sample usually a vapor formed of one of the alkali metals (e.g., rubidium, cesium, or potassium) due to their simple atomic structure, low melting point, and ease of pumping with readily available lasers) with circularly polarized light at a precisely defined frequency, thereby transferring polarized light to the vapor, and producing a large macroscopic
- the transmission of light through the vapor varies as the spin precession of the alkali metal atoms in the vapor (and thus the magnetically sensitive state) changes in response to changes in the ambient magnetic field
- the transmission of light (either the pumping light or a separate probe light) through the vapor represents a magnetic field-dependent signal (i.e., a MEG signal) that may be detected, thereby providing a measure of magnitude changes in the magnetic field.
- SERF OPMs typically amplitude modulate the vapor polarization using magnetic coils that generate oscillating magnetic fields that vary at a frequency (e.g., 2000 Hz) much greater than the relaxation rate of the vapor (approximately 100 Hz).
- the amplitude modulated MEG signal can then be demodulated using lock-in detection to recover the MEG signal.
- SERF OPMs allow for very high magnetometer sensitivities, they have a small dynamic range and bandwidth compared to SQUIDs, and can thus only operate in small magnetic fields (tens of nT, and often lower, to stay in the linear range of the OPMs). This becomes problematic when attempting to detect a very weak neural activity-induced magnetic field from the brain against an outside magnetic field.
- the magnitude of the magnetic field generated by a human brain may range from below 5 fT to just below 1 pT, while the magnitude of the outside magnetic field, including the Earth's magnetic field, may range from just above 5 pT to 100 pT.
- Earth's magnetic field covers a large range as it depends on the position of the Earth, as well as the materials of the surrounding environment where the magnetic field is measured.
- the approximate operating range of a SERF OPM (i.e., the range in which the metallic alkali vapor resonates) extends from below 1 fT up to 200 nT. Outside of this range, the metallic alkali vapor in the OPM loses sensitivity to magnetic fields. In contrast, the approximate operating range of a less sensitive sensor, such as a flux gate magnetometer, extends from around 100 fT to close to 100 pT.
- the limited dynamic range of a SERF OPM presents a challenge in measuring signals having a high dynamic range, e.g., approximately 2 ⁇ 10 10 , which corresponds to the ratio of the lower range magnitude of the MEG signal (approximately 5 fT) to the higher range magnitude of the outside magnetic field (approximately 100 ⁇ T).
- the outside magnetic field must be suppressed to near-zero. Otherwise, the SERF OPM cannot operate.
- One conventional technique for suppressing the outside magnetic field involves using large, immobile, and expensive magnetically shielded rooms to passively isolate the SERF OPMs from the sources of the outside magnetic field, effectively reducing the dynamic range requirements of the SERF OPMs used to measure the weak MEG signals.
- SERF OPMs must be capable of operating in the ambient background magnetic field of the native environment, including the Earth's magnetic field and other local sources of magnetic fields.
- Another technique for suppressing the outside magnetic field without using magnetically shielded rooms involves incorporating a direct broadband feedback control system to actively null the outside magnetic field at the SERF OPM.
- the system actuators attempt to cancel the entire bandwidth of the outside magnetic field by applying a noise-cancelling, broadband, magnetic field to the sensors.
- feedback control for OPM systems has not been implemented in a wearable system.
- a system comprises at least one magnetic field actuator (e.g., three orthogonal magnetic field actuators) configured for generating an actuated magnetic field that at least partially cancels an outside magnetic field, thereby yielding a total residual magnetic field.
- each of the magnetic field actuator(s) comprises a uniform magnetic field actuator.
- the system further comprises a plurality of magnetometers configured for taking measurements of the total residual magnetic field.
- the plurality of magnetometers includes a plurality of coarse magnetometers (e.g., flux gate magnetometers) and a plurality of fine magnetometers (e.g., optically pumped magnetometers (OPMs)).
- the system further comprises a processor configured for acquiring the total residual magnetic field measurements from the plurality of coarse magnetometers, and estimating the total residual magnetic field at the plurality of fine magnetometers based on total residual magnetic field measurements acquired from the plurality of coarse magnetometers.
- the processor is configured for estimating the total residual magnetic field at a plurality of fine magnetometers by determining a known actuated magnetic field at the plurality of magnetometers; generating a parameterized model of the outside magnetic field in the vicinity of the plurality of magnetometers based on the total residual magnetic field measurements acquired from the plurality of coarse magnetometers and the known actuated magnetic field at the plurality of coarse magnetometers; estimating the outside magnetic field at the plurality of fine magnetometers based on the parameterized outside magnetic field model (e.g., by substituting locations of the plurality of fine magnetometers into the parameterized outside magnetic field model); and estimating the total residual magnetic field at the plurality of fine magnetometers based on the known actuated magnetic field at the plurality of fine magnetometers and the outside magnetic field estimates at the plurality of fine magnetometers (e.g. by summing the known actuated magnetic field at the plurality of fine magnetometers and the outside magnetic field estimates at the plurality of fine magnetometers).
- the processor may be configured for determining the known actuated magnetic field at the plurality of magnetometers based on a known profile of the magnetic field actuator(s) and at least one actuation strength respectively of the magnetic field actuator(s).
- the processor may be configured for generating the parameterized outside magnetic field model by generating a generic model of the outside magnetic field in the vicinity of the plurality of magnetometers, and parameterizing the generic outside magnetic field model based on the total residual magnetic field measurements acquired from the plurality of coarse magnetometers and the known actuated magnetic field at the plurality of coarse magnetometers (e.g., by fitting the generic outside magnetic field model to a difference between the total residual magnetic field measurements acquired from the plurality of coarse magnetometers and the known actuated magnetic field at the plurality of coarse magnetometers.
- the generic outside magnetic field model may comprise a plurality of basis functions (e.g., 0 th order basis functions and 1st order basis functions or at least one non-linear basis function, such as, e.g., a vector spherical harmonics (VSH) basis function), in which case, the processor may be configured for fitting the generic outside magnetic field model by fitting coefficients of the plurality of basis functions to the difference between the total residual magnetic field measurements acquired from the plurality of coarse magnetometers and the known actuated magnetic field at the plurality of coarse magnetometers (e.g., using a least squares optimization technique).
- the processor may be configured generating the parameterized outside magnetic field model by incorporating the fitted coefficients into the generic outside magnetic field model.
- the processor may optionally be configured for applying Maxwell's equations to the generic outside magnetic field model in a manner that reduces the number of the plurality of basis functions.
- the processor is further configured for controlling the actuated magnetic field at least partially based on the total residual magnetic field estimates at the plurality of fine magnetometers in a manner that suppresses the total residual magnetic field at the plurality of fine magnetometers to a baseline level, such that at least one of the plurality of fine magnetometers is in-range.
- the processor is configured for acquiring the total residual magnetic field measurement(s) from the fine magnetometer(s), estimating the total residual magnetic field at the plurality of fine magnetometers based on the total residual magnetic field measurement(s) acquired from the fine magnetometer(s), and controlling the actuated magnetic field at least partially based on the total residual magnetic field estimates at the plurality of fine magnetometers in a manner that further suppresses the total residual magnetic field at the plurality of fine magnetometers to a lower level.
- the processor is configured for determining whether each of the plurality of fine magnetometers is in-range or out-of-range, and assigning a weighting to each fine magnetometer based on the in-range or out-of-range determination in a manner such that the control of the actuated magnetic field at least partially based on the total residual magnetic field estimates at the plurality of fine magnetometers suppresses the total residual magnetic field at the plurality of fine magnetometers.
- determining whether each of the plurality of fine magnetometers is in-range or out-of-range may comprise determining whether each fine magnetometer is in a linear operating range, non-linear operating range, or saturated, and the weighting may be assigned to each fine magnetometer based on the linear operating range, non-linear operating range, or saturated determination.
- the system further comprises a signal acquisition unit configured for being worn on a head of a user.
- the signal acquisition unit comprises a support structure, the magnetic field actuator(s) affixed to the support structure, and the plurality of magnetometers affixed to the support structure.
- the signal acquisition unit is configured for deriving a plurality of magnetoencephalography (MEG) signals respectively from the total residual magnetic field estimates at the plurality of fine magnetometers.
- the system further comprises a signal processing unit configured for determining an existence of neural activity in the brain of the user based on the plurality of MEG signals.
- a method comprises generating an actuated magnetic field that at least partially cancels an outside magnetic field, thereby yielding a total residual magnetic field.
- the actuated magnetic field is generated in three orthogonal directions. In another method, the actuated magnetic field is uniform.
- the method further comprises estimating the total residual magnetic field at the second set of detection locations based on the coarse total residual magnetic field measurements acquired from the first set of detection locations.
- estimating the total residual magnetic field at the second set of detection locations comprises determining a known actuated magnetic field at the plurality of detection locations; generating a parameterized model of the outside magnetic field model in the vicinity of the plurality of detection locations based on the coarse total residual magnetic field measurements acquired from the first set of detection locations and the known actuated magnetic field at the first set of detection locations; estimating the outside magnetic field at the second set of detection locations based on the parameterized outside magnetic field model (e.g., by substituting the second set of detection locations into the parameterized outside magnetic field model into the parameterized outside magnetic field model); and estimating the total residual magnetic field at the second set of detection locations based on the known actuated magnetic field at the second set of detection locations and the outside magnetic field estimates at the second set of detection locations (e.g. by summing the known actuated magnetic field at the second set of detection locations and the outside magnetic field estimates at the second set of detection locations).
- the known actuated magnetic field at the plurality of detection locations may be determined based on a known profile of the actuated magnetic field and actuation strength of the actuated magnetic field.
- generating the parameterized outside magnetic field model comprises generating a generic model of the outside magnetic field in the vicinity of the plurality of detection locations, and parameterizing the generic outside magnetic field model based on the total residual magnetic field measurements acquired from the first set of detection locations and the known actuated magnetic field at the first set of detection locations (e.g., by fitting the generic outside magnetic field model to a difference between the coarse total residual magnetic field measurements acquired from the first set of detection locations and the known actuated magnetic field at the first set of detection locations).
- the generic outside magnetic field model may comprise a plurality of basis functions (e.g., 0 th order basis functions and 1st order basis functions or at least one non-linear basis function, such as, e.g., a vector spherical harmonics (VSH) basis function), in which case, fitting the generic outside magnetic field model may comprise fitting coefficients of the plurality of basis functions to the difference between the coarse total residual magnetic field measurements acquired from the first set of detection locations and the known actuated magnetic field at the first set of detection locations (e.g., using a least squares optimization technique).
- Generation of the parameterized outside magnetic field model may comprise incorporating the fitted coefficients into the generic outside magnetic field model.
- the method may optionally comprise applying Maxwell's equations to the generic outside magnetic field model in a manner that reduces the number of the plurality of basis functions.
- the method further comprises controlling the actuated magnetic field at least partially based on the total residual magnetic field estimates at the second set of detection locations in a manner that suppresses the total residual magnetic field at the second set of detection locations to a baseline level, such that an accuracy of at least one of the fine total residual magnetic field measurements acquired from at least one of the second set of detection locations increases.
- One method further comprises deriving a plurality of magnetoencephalography (MEG) signals respectively from the total residual magnetic field estimates at the second set of detection locations, and determining an existence of neural activity in the brain of a user based on the plurality of MEG signals.
- MEG magnetoencephalography
- Another method further comprises acquiring the fine total residual magnetic field measurement(s) from at least one of the second set of detection location, estimating the total residual magnetic field at the second set of detection locations based on the total residual magnetic field measurement(s) acquired from at least one of the second set of detection location, and controlling the actuated magnetic field at least partially based on the total residual magnetic field estimates at the second set of detection locations in a manner that further suppresses the total residual magnetic field at the second set of detection locations to a lower level, such that the accuracy of the fine total residual magnetic field measurement(s) acquired from at least one of the second set of detection locations increases.
- Still another method further comprises determining an accuracy of each of the fine total residual magnetic field measurements acquired from the second set of detection locations, and assigning a weighting to the each fine total residual magnetic field measurement based on the accuracy determination in a manner such that the control of the actuated magnetic field at least partially based on the total residual magnetic field estimates at the second set of detection locations suppresses the total residual magnetic field at the second set of detection locations.
- a system comprises at least one magnetic field actuator (e.g., three orthogonal magnetic field actuators) configured for generating an actuated magnetic field that at least partially cancels an outside magnetic field, thereby yielding a total residual magnetic field.
- each of the magnetic field actuator(s) comprises a uniform magnetic field actuator.
- the system further comprises a plurality of magnetometers configured for taking measurements of the total residual magnetic field.
- the plurality of magnetometers includes a plurality of coarse magnetometers (e.g., flux gate magnetometers) and a plurality of fine magnetometers (e.g., optically pumped magnetometers (OPMs)).
- the system further comprises a processor configured for acquiring the total residual magnetic field measurements from a first set of the plurality of magnetometers, and estimating the total residual magnetic field at a second set of the plurality of magnetometers based on total residual magnetic field measurements acquired from the first set of magnetometers, and controlling the actuated magnetic field at least partially based on the total residual magnetic field estimates at the second set of magnetometers.
- each of the first set of magnetometers is an in-range magnetometer
- at least one of the second set of magnetometers is an out-of-range magnetometer.
- each of the second set of magnetometers is an out-of-range magnetometer.
- at least one of the second set of magnetometers is an in-range magnetometer.
- the first set of magnetometers and the second set of magnetometers comprises at least one common magnetometer. In yet another embodiment, all of the first set of magnetometers and all of the second set of magnetometers are common.
- At least one of the first set of magnetometers is a coarse magnetometer (e.g., a flux gate magnetometer), and wherein at least one of the second set of magnetometers is a fine magnetometer (e.g., an optically pumped magnetometer (OPM)).
- a coarse magnetometer e.g., a flux gate magnetometer
- OPM optically pumped magnetometer
- the processor is configured for estimating the total residual magnetic field at the second set of magnetometers by determining a known actuated magnetic field at the plurality of magnetometers; generating a parameterized model of the outside magnetic field in the vicinity of the plurality of magnetometers based on the total residual magnetic field measurements acquired from the first set of magnetometers and the known actuated magnetic field at the first set of coarse magnetometers; estimating the outside magnetic field at the second set of magnetometers based on the parameterized outside magnetic field model (e.g., by substituting locations of second set of magnetometers into the parameterized outside magnetic field model); and estimating the total residual magnetic field at the second set of magnetometers based on the known actuated magnetic field at the second set of magnetometers and the outside magnetic field estimates at the second set of magnetometers (e.g. by summing the known actuated magnetic field at the second set of magnetometers and the outside magnetic field estimates at the second set of magnetometers).
- the processor may be configured for determining the known actuated magnetic field at the plurality of magnetometers based on a known profile of the magnetic field actuator(s) and at least one actuation strength respectively of the magnetic field actuator(s).
- the processor may be configured for generating the parameterized outside magnetic field model by generating a generic model of the outside magnetic field in the vicinity of the plurality of magnetometers, and parameterizing the generic outside magnetic field model based on the total residual magnetic field measurements acquired from the first set of magnetometers and the known actuated magnetic field at the first set of magnetometers (e.g., by fitting the generic outside magnetic field model to a difference between the total residual magnetic field measurements acquired from the first set of magnetometers and the known actuated magnetic field at the plurality of first set of magnetometers.
- the generic outside magnetic field model may comprise a plurality of basis functions (e.g., 0 th order basis functions and 1st order basis functions or at least one non-linear basis function, such as, e.g., a vector spherical harmonics (VSH) basis function), in which case, the processor may be configured for fitting the generic outside magnetic field model by fitting coefficients of the plurality of basis functions to the difference between the total residual magnetic field measurements acquired from the first set of magnetometers and the known actuated magnetic field at the first set of magnetometers (e.g., using a least squares optimization technique).
- the processor may be configured generating the parameterized outside magnetic field model by incorporating the fitted coefficients into the generic outside magnetic field model.
- the processor may optionally be configured for applying Maxwell's equations to the generic outside magnetic field model in a manner that reduces the number of the plurality of basis functions.
- a method comprises generating an actuated magnetic field that at least partially cancels an outside magnetic field, thereby yielding a total residual magnetic field.
- the actuated magnetic field is generated in three orthogonal directions. In another method, the actuated magnetic field is uniform.
- the method further comprises acquiring measurements of the total residual magnetic field respectively from a first set of detection locations, estimating the total residual magnetic field at the second set of detection locations based on the total residual magnetic field measurements acquired from the first set of detection locations, and controlling the actuated magnetic field at least partially based on the total residual magnetic field estimates at the second set of detection locations.
- the first set of detection locations and the second set of detection locations comprises at least one common detection location.
- all of the first set of detection locations and all of the second set of detection locations are common.
- estimating the total residual magnetic field at the second set of detection locations comprises determining a known actuated magnetic field at the plurality of detection locations; generating a parameterized model of the outside magnetic field model in the vicinity of the plurality of detection locations based on the total residual magnetic field measurements acquired from the first set of detection locations and the known actuated magnetic field at the first set of detection locations; estimating the outside magnetic field at the second set of detection locations based on the parameterized outside magnetic field model (e.g., by substituting the second set of detection locations into the parameterized outside magnetic field model into the parameterized outside magnetic field model); and estimating the total residual magnetic field at the second set of detection locations based on the known actuated magnetic field at the second set of detection locations and the outside magnetic field estimates at the second set of detection locations (e.g. by summing the known actuated magnetic field at the second set of detection locations and the outside magnetic field estimates at the second set of detection locations).
- the known actuated magnetic field at the plurality of detection locations may be determined based on a known profile of the actuated magnetic field and actuation strength of the actuated magnetic field.
- generating the parameterized outside magnetic field model comprises generating a generic model of the outside magnetic field in the vicinity of the plurality of detection locations, and parameterizing the generic outside magnetic field model based on the total residual magnetic field measurements acquired from the first set of detection locations and the known actuated magnetic field at the first set of detection locations (e.g., by fitting the generic outside magnetic field model to a difference between the total residual magnetic field measurements acquired from the first set of detection locations and the known actuated magnetic field at the first set of detection locations).
- the generic outside magnetic field model may comprise a plurality of basis functions (e.g., 0 th order basis functions and 1st order basis functions or at least one non-linear basis function, such as, e.g., a vector spherical harmonics (VSH) basis function), in which case, fitting the generic outside magnetic field model may comprise fitting coefficients of the plurality of basis functions to the difference between the coarse total residual magnetic field measurements acquired from the first set of detection locations and the known actuated magnetic field at the first set of detection locations (e.g., using a least squares optimization technique).
- Generation of the parameterized outside magnetic field model may comprise incorporating the fitted coefficients into the generic outside magnetic field model.
- the method may optionally comprise applying Maxwell's equations to the generic outside magnetic field model in a manner that reduces the number of the plurality of basis functions.
- FIG. 1 is a diagram of illustrating dynamic ranges of a magnetoencephalography (MEG) signal and a typical outside magnetic field, and the operating ranges of a Spin Exchange Relaxation Free (SERF) optically-pumped magnetometer (OPM) and flux gate magnetometer, plotted on a magnetic spectrum;
- SERF Spin Exchange Relaxation Free
- OPM optically-pumped magnetometer
- FIG. 2 is a block diagram of a neural activity measurement system constructed in accordance with one embodiment of the present inventions, particularly shown in the context of a brain computer interface (BCD;
- BCD brain computer interface
- FIG. 3 is a side view of a physical implementation of the BCI of FIG. 3 ;
- FIG. 5 is a diagram illustrating an exemplary actuated magnetic field generated by the signal acquisition unit of FIG. 4 to illustrate estimation of a total residual magnetic field at the fine magnetometer sensors from available measurements of the total residual magnetic field at the coarse magnetometer sensors;
- FIG. 9 is a flow diagram illustrating another exemplary specific method of operating the signal acquisition unit of FIG. 4 in accordance with the generic method of FIG. 7 ;
- FIG. 10 is a flow diagram illustrating one exemplary method of estimating a total residual magnetic field in accordance with the generic method of FIG. 7 .
- the neural activity measurement systems (and variations thereof) described herein are configured for non-invasively acquiring magnetoencephalography (MEG) signals from a brain of a user while effectively suppressing an outside magnetic field without the use of magnetically shielded rooms, and identifying and localizing the neural activity within the cortical structures of the brain of the user based on the acquired magnetoencephalography (MEG) signals.
- MEG magnetoencephalography
- the neural activity measurement system 10 is configured for measuring neural activity in the brain 14 of a user 12 , generating commands CMD in response to the measured neural activity information, and sending the commands CMD to an external device 16 in the context of a BCI.
- the outside magnetic field B OUT may emanate from global sources (e.g., the Earth's magnetic field), and from localized sources, including, but not limited to, from electromagnetic radiation emanating from electrical outlets and sockets, electrical wires or connections in the wall, and everyday electrical equipment (microwave ovens, televisions, refrigerators, environmental systems (air conditioning, etc.) in a home, office, or laboratory setting, as well as from cell phones, biomagnetics unrelated to neural signals (such as facial muscles, magnetic fields produced by the heart or nerves firing), everyday objects encountered inside (metal and magnetic objects, including steel supports, rebar, studs, utility boxes, etc.) and outside spaces, such as cell phone towers, power lines, transformers, and moving vehicles (e.g., cars, trains, bikes, electric bikes and scooters, electric cars, etc.), user motion/rotation/translation in a background field (earth field), user clothing and eyeglasses, personal electronics (e.g., laptop computers, watches, phones, smart rings, etc.), active implantable medical devices
- the signal acquisition unit 18 is configured for generating an actuated magnetic field B ACT that at least partially cancels the relative strong outside magnetic field B OUT within the environmental magnetic field B ENV , yielding a total residual magnetic field B TOT (which is preferably zero or near-zero due to the summation of the environmental magnetic field B ENV and the actuated magnetic field B ACT .
- the signal acquisition unit 18 is further configured for detecting the total residual magnetic field B TOT as feedback to cancel the outside magnetic field B OUT .
- the signal acquisition unit 18 is also configured for extracting and outputting a clean (i.e., reduced-noise) electrical MEG signals S MEG of the MEG magnetic field B MEG from the total residual magnetic field B TOT .
- the signal acquisition unit 18 may utilize any suitable technique for acquiring the MEG magnetic field B MEG , including, but not limited to the techniques described in U.S. patent application Ser. No. 16/428,871, entitled “Magnetic Field Measurement Systems and Methods of Making and Using,” U.S. patent application Ser. No. 16/418,478, entitled “Magnetic Field Measurement System and Method of Using Variable Dynamic Range Optical Magnetometers”, U.S. patent application Ser. No. 16/418,500, entitled, “Integrated Gas Cell and Optical Components for Atomic Magnetometry and Methods for Making and Using,” U.S. patent application Ser. No.
- the neural activity measurement system 10 further comprises a signal processing unit 20 configured for processing the electrical MEG signal S MEG to identify and localize neural activity within the cortex of the brain 14 of the user 12 , and issuing the commands CMD to the external device 16 in response to the identified and localized neural activity in the brain 14 of the user 12 .
- a signal processing unit 20 configured for processing the electrical MEG signal S MEG to identify and localize neural activity within the cortex of the brain 14 of the user 12 , and issuing the commands CMD to the external device 16 in response to the identified and localized neural activity in the brain 14 of the user 12 .
- the neural activity measurement system 10 is described herein in the context of a BCI, the present inventions should not be so limited, and may be applied to any system used for any application (including, but not limited to, medical, entertainment, neuromodulation stimulation, lie detection devices, alarm, educational, etc.), where it is desirable to perform measurements on a magnetic field induced by any physiological process in a person that would benefit from cancelling the outside magnetic field B OUT .
- an application including, but not limited to, medical, entertainment, neuromodulation stimulation, lie detection devices, alarm, educational, etc.
- magnetic fields induced by electrical heart activity can be measured to determine heart activity information of a person.
- the signal acquisition unit 18 may find use in other applications, such as, e.g., other types of biomedical sensing, vehicle navigation, mineral exploration, non-destructive testing, detection of underground devices, asteroid mining, space exploration, etc.
- signal acquisition unit 18 can be adapted to measure neural signals generated from non-brain anatomical structures, as well as other types of biological signals and non-biological signals.
- the support structure 24 may be shaped, e.g., have a banana, headband, cap, helmet, beanie, other hat shape, or other shape adjustable and conformable to the user's head, such that at least some of the magnetometers 26 are in close proximity, preferably in contact, with the outer skin of the head, and in this case, the scalp of the user 12 .
- the support structure 24 may be made out of any suitable cloth, soft polymer, plastic, hard shell, and/or any other suitable material as may serve a particular implementation.
- An adhesive, strap, or belt (not shown) can be used to secure the support structure 24 to the head of the user 12 .
- the signal acquisition unit 18 may have any suitable number of magnetometers 26 .
- the signal acquisition unit 18 may have twelve coarse magnetometers 26 a and twenty-five fine magnetometers 26 b , although one of ordinary skill in the art would understand that signal acquisition unit 18 may have any suitable number of coarse magnetometers 26 a and magnetometers 26 b , including more coarse magnetometers 26 a then fine magnetometers 26 b .
- the plurality of magnetometers 26 may only comprise a plurality of fine magnetometers 26 b distributed on the inside of the support structure 24 .
- each coarse magnetometer 26 a takes the form of a flux gate magnetometer, which has a relatively low sensitivity (e.g., on the order of 100 fT), and thus, may not be capable of measuring weak magnetic fields generated by neural activity in the brain 14 of the user 12 .
- a flux gate magnetometer has a relatively high dynamic sensitivity range (in the range of 100 fT to close to 100 pT), and thus, may operate in a large outside magnetic field B OUT .
- the functions of the processor 30 are preferably performed digitally (e.g., in firmware, such as a programmable logic device (e.g., a field programmable gate array (FPGA), or an ASIC (application specific integrated circuit) device, or in a micro-processor)), in which case, one or more analog-to-digital converters (not shown) can be employed between the magnetometers 26 and the processor 30 , and one or more digital-to-analog converters (not shown) can be employed between the magnetic field actuators 28 and the processor 30 .
- firmware such as a programmable logic device (e.g., a field programmable gate array (FPGA), or an ASIC (application specific integrated circuit) device, or in a micro-processor)
- one or more analog-to-digital converters can be employed between the magnetometers 26 and the processor 30
- one or more digital-to-analog converters can be employed between the magnetic field actuators 28 and the processor 30 .
- the functions of the processor 30 may be
- the signal acquisition unit 18 may comprise more than one set of magnetic field actuators 28 and more than one processor 30 .
- each set of magnetic field actuators 28 and each corresponding processor 30 may be associated with a set of magnetometers 26 .
- the fine magnetometers 26 b , set(s) of magnetic field actuators 28 , and processor(s) 30 may be fabricated as integrated module(s).
- each integrated module may comprise a rectangular substrate containing a set or all of the fine magnetometers 26 b , a set of the magnetic field actuators 28 incorporated into the rectangular substrate, such that coils of the magnetic field actuators 28 respectively wrap around the orthogonal dimensions of the rectangular substrate, and the processor 30 affixed to the surface of the rectangular substrate between the coils.
- the signal processing unit 20 may additionally include a power supply (which if head-worn, may take the form of a rechargeable or non-chargeable battery), a control panel with input/output functions, a display, and memory. Alternatively, power may be provided to the signal processing unit 20 wirelessly (e.g., by induction).
- the neural activity measurement system 10 may optionally comprise a remote processor 22 (e.g., a Smartphone, tablet computer, or the like) in communication with the signal processing unit 20 coupled via a wired connection (e.g., electrical wires) or a non-wired connection (e.g., wireless radio frequency (RF) signals (e.g., Bluetooth, Wifi, cellular, etc.) or optical links (e.g., fiber optic or infrared (IR)) 46 .
- RF radio frequency
- the remote processor 22 may store data from previous sessions, and include a display screen.
- the functionalities of the processor 30 in the signal acquisition unit 18 may be implemented using one or more suitable computing devices or digital processors, including, but not limited to, a microcontroller, microprocessor, digital signal processor, graphical processing unit, central processing unit, application specific integrated circuit (ASIC), field programmable gate array (FPGA), and/or programmable logic unit (PLU).
- a microcontroller microprocessor, digital signal processor, graphical processing unit, central processing unit, application specific integrated circuit (ASIC), field programmable gate array (FPGA), and/or programmable logic unit (PLU).
- ASIC application specific integrated circuit
- FPGA field programmable gate array
- PLU programmable logic unit
- the signal acquisition unit 18 takes advantage of the high dynamic range of the coarse magnetometers 26 a to compensate for the relatively low dynamic range of the fine magnetometers 26 b to cancel the large outside magnetic field B OUT , while also taking advantage of high sensitivity of the fine magnetometers 26 b to compensate for the low sensitivity of the coarse magnetometers 26 a to measure the MEG signal S MEG .
- the signal acquisition unit 18 is configured for at least partially cancelling the outside magnetic field B OUT in the total residual magnetic field B TOT at the locations of the fine magnetometers 26 b by initially employing a coarse feedback control loop 50 having a relatively low sensitivity, but relatively high dynamic range, for coarsely cancelling the outside magnetic field B OUT (e.g., low-frequency cancellation of the outside magnetic field B OUT contributed by the Earth's magnetic field (e.g., any of the techniques described in U.S. application Ser. No.
- the signal acquisition unit 18 is also configured for managing the coarse feedback control loop 50 and
- the coarse feedback control loop 50 and fine feedback control loop 52 are implemented in the processor 30 , with the coarse feedback control loop 50 coarsely controlling the set of magnetic field actuators 28 in response to input from the coarse magnetometers 26 a , and the fine feedback control loop 52 finely controlling the set of magnetic field actuators 28 in response to input from the fine magnetometers 26 b .
- the processor 30 acquires the coarse error signals SC ERR output by the coarse magnetometers 26 a in response to detecting the spatial components of the total residual magnetic field B TOT , computes the characteristics (namely, the amplitude and phase) of the actuated magnetic field B ACT estimated to minimize the coarse error signals SC ERR output by the coarse magnetometers 26 a , and generates a corresponding noise-cancelling control signal C for output to the set of magnetic field actuators 28 for at least partially cancelling the outside magnetic field B OUT at the fine magnetometers 26 b , and ultimately suppressing the total residual magnetic field B TOT to a baseline level at the fine magnetometers 26 b.
- the set of magnetic field actuators 28 generates the actuated magnetic field B ACT , which combines with the outside magnetic field B OUT (along with weak MEG magnetic field B MEG from the brain 14 ) to create a total residual magnetic field B TOT at the fine magnetometers 26 b having spatial components that are at baseline level within the operating range of the fine magnetometers 26 b.
- each of the coarse error signals SC ERR and fine error signals SF ERR respectively output by the coarse magnetometers 26 a and fine magnetometers 26 b to the processor 30 , and the control signal C output by the processor 30 to the respective magnetic field actuators 28 a - 28 c is a vector (i.e., comprises an x-component, y-component, and z-component), such that the outside magnetic field B OUT can be cancelled in three dimensions.
- the signal acquisition unit 18 only employs the coarse feedback control loop 50 for at least partially cancelling the outside magnetic field B OUT , such that the spatial components of the total residual magnetic field B TOT at the fine magnetometers 26 b drop to a baseline level within the operating range of the fine magnetometers 26 b .
- the signal acquisition unit 18 does not have a fine feedback control loop 52 , and the processor 30 only uses the coarse error signals SC ERR output by the coarse magnetometers 26 a to compute the characteristics of the actuated magnetic field B ACT estimated to suppress the total residual magnetic field B TOT to near-zero at the fine magnetometers 26 b , even after the spatial components of the total residual magnetic field B TOT at the fine magnetometers 26 b are already at the baseline level, such that the fine magnetometers 26 b remain in an operating range.
- the signal acquisition unit 18 employs both the coarse feedback control loop 50 and the fine feedback control loop 52 to cancel the outside magnetic field B OUT , or employs only the coarse feedback control loop 50 to cancel the outside magnetic field B OUT , it can be appreciated that the signal acquisition unit 18 is capable of coarsely canceling a large portion of the outside magnetic field B OUT , while still collecting signals from the fine magnetometers 26 b sensitive enough to measure the weaker MEG magnetic field B MEG generated by the neural activity in the brain 14 of the user 12 .
- the processor 30 employs the management control loop 54 to manage how the coarse feedback control loop 50 and fine feedback control loop 52 are employed (e.g., how the coarse error signals SC ERR output by the coarse magnetometers 26 a and the fine error signals SF ERR output by the fine magnetometers 26 b are to be used) for optimal cancellation of the outside magnetic field B OUT , and thus optimal suppression of the total residual magnetic field B TOT , and corrects additional factors that can change more slowly over time, such as, e.g., calibrating the magnetometers 26 (e.g., using calibration techniques described in U.S. Provisional Application Ser. No.
- the management control loop 54 manages the coarse feedback control loop 50 and fine feedback control loop 52 based on whether the fine magnetometers 26 b are in-range or out-of-range, e.g., by considering coarse error signals SC ERR from the coarse magnetometers 26 a and ignoring fine error signals SF ERR if the fine magnetometers 26 b are out-of-range, and ignoring coarse error signals SC ERR from the coarse magnetometers 26 a and considering fine error signals SC ERR from the fine magnetometers 26 b if the fine magnetometers 26 are in-range.
- the management control loop 54 may monitor the spatial component of the total residual magnetic field B TOT and the overall behavior and history of the signal at each fine magnetometer 26 b to determine whether or not the fine magnetometer 26 b is in-range or out-of-range. It is noted that the spatial components of the total residual magnetic field B TOT at the fine magnetometers 26 b may be substantially different from each other, and thus, some of the fine magnetometers 26 b may be in-range, while other fine magnetometers 26 b may be out-of-range.
- the management control loop 54 may generally activate the fine feedback control loop 52 after initiating activation of the coarse feedback control loop 50 .
- the coarse feedback control loop 50 may coarsely control the actuated magnetic field B ACT in a manner that at least partially cancels the outside magnetic field B OUT , and thus suppresses the total residual magnetic field B TOT at the fine magnetometers 26 b to a baseline level, such that the at least one of magnetometers 26 b comes in-range.
- the management control loop 54 may then activate the feedback control loop 52 to finely control the actuated magnetic field B ACT in a manner that further suppresses the total residual magnetic field B TOT at the fine magnetometer(s) 26 b that just came in-range to a lower level.
- the sensor hand-off procedure can be from one, some, or all coarse magnetometers 26 a to one, some, or all of the fine magnetometers 26 b.
- the processor 30 may then ignore a coarse error signal SC ERR from at least one coarse magnetometer 26 a that is in proximity to the previously unavailable fine magnetometer 26 b , and instead consider the more accurate fine error signal SF ERR from this previously unavailable fine magnetometer 26 b (in essence, passing or handing off detection of the total residual magnetic field B TOT from the coarse magnetometer(s) 26 b to the fine magnetometer 26 b ).
- the management control loop 54 may then ignore the fine error signal SF ERR from that fine magnetometer 26 b , and instead consider the coarse error signal SC ERR from at least one coarse magnetometer 26 a in proximity to the now unavailable fine magnetometer 26 b (in essence, passing or handing off detection of the total residual magnetic field B TOT from the fine magnetometer 26 b to the coarse magnetometer 26 a ).
- the management control loop 54 may operate the fine feedback control loop 52 to control the actuated magnetic field B ACT based on the fine error signals SF ERR respectively output by fine magnetometers 26 b as they come in-range.
- the management control loop 54 may operate the fine feedback control loop 52 to prevent control of the actuated magnetic field B ACT based on the fine error signals SF ERR respectively output by fine magnetometers 26 b as they go out-of-range.
- the management control loop 54 may weight the fine magnetometers 26 b , in which case, the management control loop 54 may not perform a “sensor hand-off” procedure, per se, but may assign a weight a to any given fine magnetometer 26 b between a value 0 (no weight) and 1 (full weight). For example, the management control loop 54 may monitor different operating parameters of a fine magnetometer 26 b to determine whether the fine magnetometer 26 b is in a linear operating range, or outside of the linear operating range, but not saturated (non-linear operating range), or is saturated.
- the weighting a assigned to the fine magnetometer 26 b can be 1 (i.e., full weight); if the fine magnetometer 26 b is found to be saturated, the weighting a assigned to the fine magnetometer 26 b can be 0 (i.e., no weight); and if the fine magnetometer 26 b is found to be in the non-linear operating range, the weighting a assigned to the fine magnetometer 26 b can be between 0 and 1 (i.e., partial weight), depending on how close the fine magnetometer 26 b is to saturation.
- Such parameters and coefficients can include offset and gain coefficients for the coarse magnetometers 26 a , gain constants for the fine magnetometers 26 b , actuator gains and offsets for the set of magnetic field actuators 28 , electronics time delay latency coefficients in the coarse feedback control loop 50 and fine feedback control loop 52 (i.e., the amount of time between generating the coarse error signal SC ERR or fine error signal SF ERR and activating the set of magnetic field actuators 28 ), and other parameters of the signal acquisition unit 18 .
- the management control loop 54 may determine coefficients and parameters for different temporal and spatial ranges.
- the gain that the set of magnetic field actuators 28 may have on the coarse magnetometers 26 a and fine magnetometers 26 b may differ with the placement and location offset of magnetic field actuators 28 (e.g., as the head of the user 12 moves or the support structure 24 deforms).
- the management control loop 54 may identify at least one, some, or all of the coefficients or parameters over these changing conditions.
- a mathematical and numerical model of the signal acquisition unit 18 has some coefficients or parameters that are considered poorly or insufficiently known.
- a mathematical and numerical model of the signal acquisition unit 18 does not have a predetermined structure, and the coefficients or parameters consist of transfer functions or linear mappings from one set of signals to another.
- the management control loop 54 may compare the response of a structured or unstructured model of the signal acquisition unit 18 to the measurements from the coarse magnetometers 26 a and fine magnetometers 26 b , and the coefficients or parameters may be varied until any disagreement between the mathematical model of the signal acquisition unit 18 and the actual measured signals is decreased.
- the coefficients or parameters of the mathematical model that achieve such a decrease in disagreement are the estimated parameters of the signal acquisition unit 18 (meaning, if the mathematical model with selected parameter values x, y, and z best matches the actual measured behavior of the system, then the values x, y, and z are a system identification estimate of the poorly or insufficiently known coefficients or parameters of the system).
- the management control loop 54 may employ weighted least squares, observer filters, Kalman filters, Wiener filters, or other filters.
- the management control loop 54 may employ time domain, frequency domain, recursive techniques, parametric and non-parametric methods, linear and nonlinear optimization techniques including gradient descent, matrix methods, convex methods, non-convex methods, neural networks, genetic algorithms, fuzzy logic, and machine learning methods.
- the management control loop 54 may perform calibration techniques prior to operating the neural activity measurement system 10 , or calibration techniques may be performed in real-time as the neural activity measurement system 10 operates.
- the signal acquisition unit 18 may be calibrated by applying a known magnetic field in a controlled shielded setting (e.g., to characterize the coarse magnetometers 26 a for their offsets and gain measurements).
- the management control loop 54 may estimate the offsets and gains of the coarse magnetometers 26 a in real time (i.e., as the neural activity measurement system 10 is running), e.g., by estimating and comparing the offset of one coarse magnetometer against the measurements of other coarse or fine magnetometers. Further details discussing the calibration of coarse magnetometers are disclosed in U.S. Provisional Application Ser. No. 62/975,709, entitled “Self-Calibration of Flux Gate Offset and Gain Drift To Improve Measurement Accuracy Of Magnetic Fields From the Brain Using a Wearable MEG System”, which is expressly incorporated herein by reference.
- the components, along with the coarse feedback control loop 50 , fine feedback control loop 52 , and management control loop 54 , illustrated in FIG. 4 may be duplicated.
- a subset of the coarse magnetometers 26 a will be associated with each coarse feedback control loop 50
- a subset of the fine magnetometers 26 b will be associated with each fine feedback control loop 52 .
- the processors 30 may communicate with each other to generate the proper noise-cancelling control signals C that will result in the composite cancelling magnetic field B ACT to be generated by the combination of sets of magnetic field actuators 28 to cancel the outside magnetic field B OUT .
- a single processor 30 may be used to control all sets of the magnetic field actuators 26 .
- the magnetic field actuators 28 are preferably spatially located as close as possible to the fine magnetometers 26 a (and, in fact, may be integrated with the fine magnetometers 26 b as a single unit), the measurements of the outside magnetic field B OUT are at the locations of the coarse magnetometers 26 b , which may be spatially located a significant distance from the magnetic field actuators 28 . Therefore, the actuated magnetic field B ACT that cancels the outside magnetic field B OUT at the fine magnetometers 26 b , as illustrated in FIG.
- the coarse magnetometers 26 b (which are far from the magnetic field actuators 28 ) much differently than the actuated magnetic field B ACT experienced by the fine magnetometers 26 b (which are close to the magnetic field actuators 28 ).
- the coarse magnetometers 26 a will be affected by the actuated magnetic field B ACT generated by the magnetic field actuators 28 much less than the fine magnetometers 26 b will be affected by the same actuated magnetic field B ACT .
- the outside magnetic field B OUT itself, may spatially vary, and thus, the spatial components of the outside magnetic field B OUT at the coarse magnetometers 26 a may substantially differ from the spatial components of the outside magnetic field B OUT at the fine magnetometers 26 a.
- the outside magnetic field B OUT must be cancelled even though the total residual magnetic field B TOT (i.e., the sum of the outside magnetic field B OUT and the actuated magnetic field B ACT ) measured by the coarse magnetometers 26 b may differ substantially from the total residual magnetic field B TOT present at the fine magnetometers 26 a , for the primary reason that the coarse magnetometers 26 b are located further away from the magnetic field actuators 28 than the fine magnetometers 26 a are located from the magnetic field actuators 28 .
- the total residual magnetic field B TOT i.e., the sum of the outside magnetic field B OUT and the actuated magnetic field B ACT
- the coarse magnetometers 26 a detect the respective spatial components of the total residual magnetic field B TOT remotely from the fine magnetometers 26 b , a significant error may potentially be created in the coarse feedback control loop 50 used to coarsely cancel the outside magnetic field B OUT at the fine magnetometers 26 b , because the coarse feedback control loop 50 may be falsely reacting to the total residual magnetic field B TOT at the location of the coarse magnetometers 26 a rather than the true total residual magnetic field B TOT that occurs at the fine magnetometers 26 b , and that must be cancelled to bring them into their operating range.
- the coarse feedback loop 50 will be operating with the wrong value of the total residual magnetic field B TOT .
- substantive inaccuracies in the suppression of the total residual magnetic field B TOT at the fine magnetometers 26 b may occur.
- a number of coarse magnetometers 26 a (represented as filled squares) and a number of fine magnetometers 26 b (represented as filled circles) are located, in this example along a single axis (e.g., along the x-dimension).
- three coarse magnetometers 26 a are shown on the left-side of the x-axis
- four fine magnetometers 26 b are shown in the center of the x-axis
- three other coarse magnetometers 26 a are shown on the right-side of the x-axis.
- any number of coarse magnetometers 26 a and any number of fine magnetometers 26 b may be arranged relative to each other in any suitable manner, including along other dimensions, namely the y- and z-dimensions.
- the course magnetometers 26 a and fine magnetometers 26 b are exposed to an exemplary outside magnetic field B OUT , which for the purposes of brevity and clarity in illustration, comprises only the Earth's magnetic field, although the outside magnetic field B OUT may comprise other types of magnetic noise as discussed above.
- the outside magnetic field B OUT can be assumed to have certain properties.
- An appropriate and sufficiently accurate representation of the outside field B OUT might have both a uniform (0 th order) spatial component and may also have a linear (first order) spatial component, although it is possible to include additional spatial components, such as 2 nd order, 3 rd order, 4 th order, etc., components, or to choose different basis functions to represent the outside field B OUT .
- the outside magnetic field B OUT illustrated in FIG. 5 is the type of outside magnetic field that needs to be cancelled, so that the fine magnetometers 26 b can come in-range.
- the outside magnetic field B OUT is negative starting at the left of the magnetometers 26 , and becomes less negative to the right, thereby having a positive slope.
- the present intent is to illustrate how the total residual magnetic field B TOT at the fine magnetometers 26 b substantially differs from the total residual magnetic field B TOT at the coarse magnetometers 26 b due to the significant differences in distance between the fine magnetometers 26 b and the coarse magnetometers 26 a from the magnetic field actuator 28 .
- the actuated magnetic field B ACT which in this exemplary instance, has a relatively strong central actuating portion 60 at the fine magnetometers 26 b , and less strong (or fringe) actuating portions 62 at the coarse magnetometers 26 a .
- the total residual magnetic field B TOT is the summation of the outside magnetic field B OUT and the actuated magnetic field B ACT .
- This summation is shown at the top of FIG. 5 , and has a tilted-hat shape due to the positive slope of the outside magnetic field B OUT plus the hat shape (strong central actuating portions 60 plus weak fringe actuating portions 62 ) of the actuated field B ACT .
- the set of magnetic field actuators 28 are spatially much closer to the fine magnetometers 26 b (and, in fact, may be integrated with the fine magnetometers 26 b as a single unit) than the coarse magnetometers 26 a .
- the coarse magnetometers 26 a and fine magnetometers 26 b may essentially experience the same outside magnetic field B OUT , due to the spatial differences between coarse magnetometers 26 a and fine magnetometers 26 b relative to the proximate magnetic field actuators 28 , the coarse magnetometers 26 a will be affected by the actuated magnetic field B ACT generated by the magnetic field actuators 28 much less than the fine magnetometers 26 b will be affected by the same actuated magnetic field B ACT (e.g., 20%).
- the measurements of the total residual magnetic field B TOT at the coarse magnetometers 26 a may be quite different than the true (not yet measured) total residual magnetic field B TOT at the fine magnetometers 26 b .
- the total residual magnetic field B TOT at the coarse magnetometers 26 a is strongly negative on the left, and is modestly positive on the right, while the true unmeasured total residual magnetic field B TOT at the fine magnetometers 26 b is strongly positive in this example, and this is because these fine magnetometers 26 b experience a much stronger central actuating portion 60 of the actuated magnetic field B ACT from the magnetic field actuator 28 than do the far-away coarse magnetometers 26 a that only experience the fringe actuating portions 62 of the actuated magnetic field B ACT from the magnetic field actuator 28 .
- the estimation method implemented on processor 30 is configured for compensating for the difference between the measurements of the total residual magnetic field B TOT at the coarse magnetometers 26 a and the true total residual magnetic field B TOT at the fine magnetometers 26 b when attempting to cancel the outside magnetic field B OUT occurring at the fine magnetometers 26 b .
- the processor 30 accomplishes this by inferring the total residual magnetic field B TOT at the fine magnetometers 26 b from the available measurements of the total residual magnetic field B TOT taken by the coarse magnetometers 26 a .
- the coarse feedback loop 50 determines the characteristics of the actuated magnetic field B ACT required to drive the total residual magnetic field B TOT at the fine magnetometers 26 b to near-zero (i.e., a baseline level at which the fine magnetometers 26 b are now in-range).
- the processor 30 may achieve this even if, as exemplified in FIG. 5 , the total residual magnetic field B TOT at the coarse magnetometers 26 a is substantially different (e.g. is negative on the left, and close to zero and slightly positive on the right) from the total residual magnetic field B TOT at the fine magnetometers 26 b (e.g.
- the magnetic field actuator 28 immediately adjacent to the fine magnetometer 26 b (where a direct measurement is not yet available), but is far from the coarse magnetometer 26 a (where a measurement is available).
- 100% of the strength of the actuated magnetic field B ACT reaches the nearby fine magnetometer 26 b (i.e., the actuated magnetic field B ACT at the fine magnetometer 26 b is minus 50 microTesla ( ⁇ 50 uT))
- 20% of the strength of the actuated magnetic field B ACT reaches the further away coarse magnetometer 26 a (i.e., the actuated magnetic field B ACT at the fine magnetometer 26 b is minus 10 microTesla ( ⁇ 10 uT)
- the true total residual magnetic field B TOT at the coarse magnetometer 26 a will be B
- the not-measured total residual magnetic field B TOT at the fine magnetometer 26 b (2 uT) is very different than the total residual magnetic field B TOT-MEAS measured at by the coarse magnetometer 26 a (42 uT).
- the coarse feedback control loop 50 needs to drive the true total residual magnetic field B TOT at the location of the fine magnetometer 26 b to near-zero (so that the fine magnetometer 26 b can come into range), and it must do so by using information from the total residual magnetic field B TOT-MEAS measured by the coarse magnetometer 26 a (42 uT), which is very different.
- the strength of the previously applied actuated magnetic field B ACT is known by the processor 30 , since it was generated by the signal acquisition unit 18 , itself.
- the processor 30 may accurately infer an estimate of the total residual magnetic field B TOT-EST at the location of the fine magnetometer 26 b , while it is still out-of-range.
- the result is an accurate estimate of the true and unmeasured total residual magnetic field B TOT-EST at the location of the out-of-range fine magnetometer 26 b (2 uT) based on the available current measurement of the total residual magnetic field B TOT-MEAS at the coarse magnetometer 26 a (42 uT) and on the knowledge of the strength of actuated magnetic field B ACT ( ⁇ 50 uT) at the previous time step.
- the total residual magnetic field estimate B TOT-EST at the fine magnetometer 26 b has been illustrated as being inferred from the total residual magnetic field measurement B TOT-MEAS at the coarse magnetometer 26 a for purposes of simplicity, in practice, the total residual magnetic field estimate B TOT-EST at the fine magnetometer 26 b will typically be inferred from the total residual magnetic field measurements B TOT-MEAS at multiple coarse magnetometers 26 a and any other fine magnetometers 26 b that are in-range, as discussed in further detail below.
- outside magnetic field B OUT and actuated magnetic field B ACT (and thus, the true total residual magnetic field B TOT ) will differ at the multiple magnetometers 26 from which the total residual magnetic field estimate B TOT-EST at the fine magnetometer 26 b will be estimated.
- the process can be repeated for inferring the total residual magnetic field estimate B TOT-EST at additional fine magnetometers 26 b.
- the fine feedback control loop 52 of the processor 30 may be configured for correcting or refining the fine error signals SF ERR by continuing to infer the total residual magnetic field B TOT at the fine magnetometers 26 b not only from the measurements of the total residual magnetic field B TOT-MEAS acquired from the coarse magnetometers 26 a , but also from measurements of the total residual magnetic field B TOT-MEAS acquired from the fine magnetometers 26 b.
- the estimation technique employed by the processor 30 may be generalized to infer estimates of the total residual magnetic field B TOT-EST at a first set of magnetometers 26 ′ (comprising coarse magnetometers 26 a and/or fine magnetometers 26 b ) based on measurements of the total residual magnetic field B TOT-MEAS (i.e., the coarse error signals SC ERR and/or fine error signals SF ERR ) acquired from a second set of magnetometers 26 ′′ (comprising coarse magnetometers 26 a and/or fine magnetometers 26 b ).
- the first set of magnetometers 26 ′ from which the measurements of the actual magnetic field B TOT-MEAS are taken comprises only coarse magnetometers 26 a prior to the fine magnetometers 26 b coming in-range, but may include measurements from the fine magnetometers 26 b as they come in-range.
- the second set of magnetometers 26 ′′ at which the total residual magnetic field estimates B TOT-EST are inferred will generally be fine magnetometers 26 b that are out-of-range (i.e., at start-up of the signal processing unit 18 , such that the fine magnetometers 26 b are coming in-range, or when the fine magnetometers 26 b have gone out-of-range due to large dynamic variations in the outside magnetic field B OUT from, e.g., an unforeseen spike in the outside magnetic field B OUT like a power surface or the user 12 bring the signal processing unit 18 temporarily near a wall socket or perhaps turning their head too quickly), such that cancellation of the outside magnetic field B OUT may be accurately performed.
- the second set of magnetometers 26 ′′ at which the total residual magnetic field estimates B TOT-EST are inferred may include fine magnetometers 26 b that are in-range (and fully functional), as well as coarse magnetometers 26 a , and thus from which measurements of the total residual magnetic fields B TOT-MEAS have been previously taken, such that such measurements taken from the coarse magnetometers 26 a and fine magnetometers 26 b may be corrected.
- the inference of the total residual magnetic field estimate B TOT-EST at any given magnetometer 26 from measurements of the total residual magnetic field B TOT-MEAS at multiple other different magnetometers 26 can be more accurate than the measurement of the total residual magnetic field B TOT-MEAS at that magnetometer 26 , because measurements from many magnetometers 26 provides a more accurate averaged reading that may exceed the accuracy of any one magnetometer 26 , even at its own location.
- inferring the total residual magnetic field estimate B TOT-EST at a coarse magnetometer 26 a or a fine magnetometer 26 b that is in-range may still be beneficial.
- first set of magnetometers 26 ′ and the second set of magnetometers 26 ′′ may both include coarse magnetometers 26 a and fine magnetometers 26 b , and in fact, may both include all of the coarse magnetometers 26 a and all of the fine magnetometers 26 b that are in-range.
- the processor 30 is configured for initially including the coarse magnetometers 26 a in the first set of magnetometers 26 ′, excluding the fine magnetometers 26 b from the first set of magnetometers 26 ′, and initially including the fine magnetometers 26 b in the second set of magnetometers 26 ′′, such that control of the actuated magnetic field B ACT at least partially based on the total residual magnetic field estimates B TOT-EST at the second set of magnetometers 26 ′′ suppresses the total residual magnetic field B TOT at the second set of magnetometers 26 ′′ to a baseline level, such that the at least one fine magnetometer 26 b comes in-range.
- the processor 30 may be configured for acquiring the total residual magnetic field measurements B TOT-MEAS from the fine magnetometers 26 b , and controlling the actuated magnetic field B ACT is controlled at least partially based on the total residual magnetic field measurements B TOT-MEAS acquired from the fine magnetometers 26 b , such that the total residual magnetic field B TOT at the fine magnetometers 26 b is suppressed to a lower level.
- the processor 30 is configured for subsequently including the fine magnetometers 26 b in the first set of magnetometers 26 ′, such that control of the actuated magnetic field B ACT at least partially based on the total residual magnetic field estimates B TOT-EST at the second set of magnetometers 26 ′′ further suppresses the total residual magnetic field B TOT at the second set of magnetometers 26 b to a lower level.
- the processor 30 is configured for including both the coarse magnetometers 26 a and the fine magnetometers 26 b in the first set of magnetometers 26 ′, determining whether each of the fine magnetometers 26 b is in-range (e.g., in a linear operating range or a non-linear operating range) or out-of-range (e.g., saturated), and assigning a weighting to each fine magnetometer 26 b based on the in-range or out-of-range determination in a manner such that the control of the actuated magnetic field B ACT at least partially based on the total residual magnetic field estimates B TOT-EST at the second set of magnetometers 26 b suppresses the total residual magnetic field B TOT at the second set of magnetometers 26 b .
- the processor 30 is configured for including both the coarse magnetometers 26 a and the fine magnetometers 26 b in the first set of magnetometers 26 ′, determining whether each of the fine magnetometers 26 b is in-range (e.g., in a
- the processor 30 may initially assign a relatively low weighting (even a weighting of 0) to any fine magnetometer 26 b that is out-of-range, and as each fine magnetometer 26 b comes in-range, assign a relatively high weighting to each in-range magnetometer 26 b.
- the processor 30 is configured for inferring the total residual magnetic field estimates B TOT-EST at the second set of the magnetometers 26 ′′ by (1) acquiring the measurements of the total residual magnetic field B TOT-MEAS from the first set of magnetometers 26 ′ (i.e., the coarse error signals SC ERR and/or fine error signals SF ERR ); (2) determining the known actuated magnetic field B ACT-KNOWN at the magnetometers 26 based on a known profile of the set of magnetic field actuators 28 and the actuation strengths of the magnetic field actuators 28 ; (3) generating a generic model of the outside magnetic field B OUT-MOD in the vicinity of the magnetometers 26 ; (4) parameterizing the generic outside magnetic field model B OUT-MOD based on the total residual magnetic field B TOT-MEAS measured by the first set of magnetometers 26 ′ and the known actuated magnetic field B ACT-KNOWN at the first set of magnetometers 26 ′ to generate a parameterized outside magnetic field model B OUT-PAR (
- the processor 30 can then use the total residual magnetic field estimates B TOT-EST at the second set of magnetometers 26 ′′ to compute the characteristics of the actuated magnetic field B ACT estimated to coarsely and/or finely cancel the outside magnetic field B OUT via the coarse feedback control loop 50 and/or a fine feedback control loop 52 (see FIG. 4 ), such that the total residual magnetic field B TOT drops to or remains at a level in the operating range of the second set of magnetometers 26 ′′, and generates a corresponding noise-cancelling control signal C for output to the set of magnetic field actuators 28 .
- B TOT - MEAS [ B TOT - MEAS 11 ... B TOT - MEAS 1 ⁇ K ⁇ ⁇ ⁇ B TOT - MEAS N ⁇ 1 ... B TOT - MEAS NK ] . [ 1 ]
- equation [1] can be expressed as a vector ⁇ right arrow over (B TOT-MEAS ) ⁇ (x, y, z, t) that varies over space and time, where x, y, z are the three cardinal directions, and t is time that varies over space and time.
- the total residual magnetic field measurements ⁇ right arrow over (B TOT-MEAS ) ⁇ (x, y, z, t) at the locations of an N′ number of magnetometers 26 ′ may be given as:
- the processor 30 may determine the known actuated magnetic field B ACT-KNOWN at the magnetometers 26 based on a known profile of the set of magnetic field actuators 28 and the actuation strengths of the magnetic field actuators 28 .
- an M number of the magnetic field actuators 28 may apply an M ⁇ K actuations of the actuated magnetic field B ACT over time in accordance with the discretized matrix:
- the actuated magnetic field B ACT can be defined as a vector ⁇ right arrow over (B ACT ) ⁇ (x, y, z, t) that varies over space and time.
- the set of magnetic field actuators 28 respectively have an M number of actuation strengths in the form of a vector (t) (one for each magnetic field actuator 28 ) and a matrix of influence R by the actuation strength vector (t) to the actuated magnetic field ⁇ right arrow over (B ACT ) ⁇ (x, y, z, t) at an N number of magnetometers 26 (all of the magnetometers 26 , i.e., the union of the N′ number of first set of magnetometers 26 ′ and an N′′ number of the second set of magnetometers 26 ′′), as follows:
- the known profile of the actuated magnetic field B ACT may have, e.g., the trapezoidal shape illustrated in FIG. 5
- the matrix of influence R may be generated using mathematical or numerical modeling (e.g., by simulating the magnetic field emanating from each of the magnetic field actuators 28 to different spatial locations, e.g., at the N number of magnetometers 26 ) or by the performance of calibration measurements ahead of time (i.e., generate a nominal actuated magnetic field and measure the actuated magnetic field at different spatial locations, e.g., at the magnetometers 26 ) that quantifies the profile of the actuated magnetic field B ACT generated by each of magnetic field actuators 28 , and therefore defines the influence of each magnetic field actuator 28 at the location of each magnetometer 26 .
- the resulting actuated magnetic field at the locations of the magnetometers 26 will linearly scale with the actuation strength vectors (t) of the magnetic field actuators 28 , such that a known actuated magnetic field ⁇ right arrow over (B ACT-KNOWN ) ⁇ (x, y, z, t) that varies over space and time at the N number of magnetometers 26 may be given as:
- the processor 30 may generate a generic model of the outside magnetic field B OUT-MOD in the vicinity of the magnetometers 26 .
- the outside magnetic field B OUT may assume to have certain physical properties.
- the processor 30 may generate the generic outside magnetic field model B OUT-MOD in the vicinity of the magnetometers 26 based on these assumed physical properties in any one of a variety of manners, but in the illustrated embodiment, the processor 30 models the outside magnetic field B OUT as a function of space by employing one or more basis functions. In one embodiment, the processor 30 models the outside magnetic field B OUT by employing basis functions having a linear spatial dependence.
- such basis functions may have uniform (0 th order) components and linear (first order) spatial components (i.e., the slope), as illustrated in FIG. 5 , although other selected basis functions can be used to model the outside magnetic field B OUT .
- Second order non-linear spatial components can be ignored, although in alternative embodiments, basis functions with non-linear spatial dependence, or other types of modeling that one of ordinary skill in the art of signal processing, system identification, or control will recognize will serve the same purpose (such as other types of modes or bases, including singular values, eigenvectors, or bases collected from data such as collected by proper orthogonal decomposition or by other fitting methods).
- a time-varying and spatially-varying model of the outside magnetic field ⁇ right arrow over (B OUT-MOD ) ⁇ (x, y, z, t) is:
- a total of 12 basis functions i.e., ⁇ x (t), ⁇ xx (t)x, ⁇ xy (t)y, ⁇ xz (t)z, ⁇ y (t), ⁇ yx (t)x, ⁇ yy (t)y, ⁇ yz (t)z, ⁇ z (t), ⁇ zx (t)x, ⁇ zy (t)y, ⁇ zz (t)z
- Higher order spatial components, such as second order terms in space like x 2 , xy, and z 2 , and third, fourth, and fifth order terms, etc., for this exemplary instance are assumed negligible.
- the processor 30 may constrain the outside magnetic field ⁇ right arrow over (B OUT-MOD ) ⁇ (x, y, z, t) using Maxwell's equations, thereby decreasing the number of elements in the coefficient vector ⁇ right arrow over ( ⁇ ) ⁇ (t) to eight, as described in U.S. Provisional Application Ser. No. 62/975,723, entitled “Algorithms that Exploit Maxwell's Equations and Geometry to Reduce Noise for Ultra-Fine Measurements of Magnetic Fields from the Brain Using a Wearable MEG System”, which is expressly incorporated herein by reference.
- the generic outside magnetic field model ⁇ right arrow over (B OUT-MOD ) ⁇ (x, y, z, t) at the N number of magnetometers 26 may be given as:
- the processor 30 may parameterize the generic outside magnetic field model ⁇ right arrow over (B OUT-MOD ) ⁇ (x, y, z, t) based on the total residual magnetic field ⁇ right arrow over (B TOT-MEAS ) ⁇ (x, y, z, t) measured by the N′ number of magnetometers 26 ′ and the known actuated magnetic field ⁇ right arrow over (B ACT-KNOWN ) ⁇ (x, y, z, t) at the N′ number of magnetometers 26 ′ to generate a parameterized outside magnetic field model B OUT-PAR .
- the parameterized outside magnetic field model B OUT-PAR is generalized in that it can be applied to all of the magnetometers 26 (i.e., both the first set of magnetometers 26 ′ and the second set of magnetometers 26 ′′).
- the processor 30 may employ any suitable fitting optimization technique (including linear and nonlinear methods, gradient descent, matrix methods, system identification, or machine learning methods, etc.) to fit the coefficient vector (t) of the generic outside magnetic field model ⁇ right arrow over (B OUT-MOD ) ⁇ (x, y, z, t) to the difference between the total residual magnetic field ⁇ right arrow over (B TOT-MEAS ) ⁇ (x, y, z, t) measured by the first set of magnetometers 26 ′ and the known actuated magnetic field ⁇ right arrow over (B ACT-KNOWN ) ⁇ (x, y, z, t) at the first set of magnetometers 26 ′.
- any suitable fitting optimization technique including linear and nonlinear methods, gradient descent, matrix methods, system identification, or machine learning methods, etc.
- the solution that minimizes the difference between the total residual magnetic field ⁇ right arrow over (B TOT-MEAS ) ⁇ (x, y, z, t) measured by each of the magnetometers 26 ′ and the product of the matrix of influence R at the magnetometers 26 ′ and the vector of actuation strengths (t) of the set of magnetic field actuators 28 yields an estimate of the coefficient vector ⁇ right arrow over ( ⁇ *) ⁇ (t) of the generic outside magnetic field model ⁇ right arrow over (B OUT-MOD ) ⁇ (x, y, z, t) at the magnetometers 26 ′.
- a parameterized outside magnetic field model ⁇ right arrow over (B OUT-PAR ) ⁇ (x, y, z, t) may be generated by substituting the solved coefficient vector ⁇ right arrow over ( ⁇ *) ⁇ (t) into equation [6]. It should be appreciated that the foregoing method transforms a discrete set of the total residual magnetic field measurements ⁇ right arrow over (B TOT-MEAS ) ⁇ (x, y, z, t) into continuous parameterizations of the outside magnetic field ⁇ right arrow over (B OUT ) ⁇ (x, y, z, t), i.e., the parameterized outside magnetic field model ⁇ right arrow over (B OUT-PAR ) ⁇ (x, y, z, t). This enables the processor 30 to estimate the outside magnetic field B OUT at arbitrary locations in the vicinity from which the measurements of the total residual magnetic field B TOT-MEAS were acquired, i.e., in the vicinity of the signal acquisition unit 18 .
- the processor 30 may determine an outside magnetic field estimates ⁇ right arrow over (B OUT-EST ) ⁇ (x, y, z, t) at the second set of magnetometers 26 ′′ based on the parameterized outside magnetic field model ⁇ right arrow over (B OUT-PAR ) ⁇ (x, y, z, t).
- the outside magnetic field estimates ⁇ right arrow over (B OUT-EST ) ⁇ (x, y, z, t) at the second set of magnetometers 26 ′′ may be determined by substituting the (x,y,z) locations of the second set of magnetometers 26 ′′ into the parameterized outside magnetic field model ⁇ right arrow over (B OUT-PAR ) ⁇ (x, y, z, t); i.e., the outside magnetic field estimates ⁇ right arrow over (B OUT-EST ) ⁇ (x, y, z, t) at the second set of magnetometers 26 ′′ may be recovered from the product of the influence matrix Q and the least squares fit values of the coefficient vector ⁇ right arrow over ( ⁇ *) ⁇ (t).
- the processor 30 may determine the total residual magnetic field estimates ⁇ right arrow over (B TOT-EST ) ⁇ (x, y, z, t) at second set of magnetometers 26 ′′ based on the known actuated magnetic field ⁇ right arrow over (B ACT-KNOWN ) ⁇ (x, y, z, t) at the second set of magnetometers 26 ′′ and the outside magnetic field estimates ⁇ right arrow over (B OUT-EST ) ⁇ (x, y, z, t) at the second set of magnetometers 26 ′′.
- equation [10] need only be solved to accurately infer the total residual magnetic field estimates B TOT-EST at the magnetometers 26 .
- all three directional components of the total residual magnetic field B TOT-MEAS have been described as being measured at the same location or virtually at the same location for each magnetometer 26 ′ and all three directional components of the total residual magnetic field B TOT-EST have been described as being estimated at the same location or virtually at the same location for each magnetometer 26 ′′, less than three directional components of the total residual magnetic field B TOT-MEAS may be measured at the same location or virtually at the same location for each magnetometer 26 ′ and/or less than three directional components of the total residual magnetic field B TOT-EST may be estimated at the same location or virtually at the same location for each magnetometer 26 .
- the processor 30 may generate an outside magnetic field model B OUT-MOD by employing basis functions other than the linear basis functions, and in particular other functions than the uniform (0 th order) spatial component and linear (first order) spatial component (i.e., the slope), as illustrated in FIG. 5 .
- set of mutually orthogonal vector fields with spatial patterns that are determined a-priori can be used as basis function.
- complex-valued vector fields known as the vector spherical harmonics (VSH)
- VSH vector spherical harmonics
- the matrix W has n vector columns of length equal to the number of magnetometers in the first set of magnetometers 26 ′ and containing the dot products of the basis fields w i with the unit-length vectors describing the sensitive axes of the first set of magnetometers 26 ′ at the location of the each of the magnetometers 26 ′. Because of these properties, a combination of n VSH basis fields w i (r) as set forth equation [12] is guaranteed to model the outside magnetic field B OUT at arbitrary locations r up to an error ⁇ that decreases as the number independent measurements at the first set of magnetometers 26 ′ increases.
- Any optimization method including linear and nonlinear methods, gradient descent, and machine learning methods, may be used to estimate the weighting coefficients ⁇ i that multiply the basis functions to represent the outside magnetic field at each moment, and thus generate the parameterized outside magnetic field model B OUT-PAR (representative of the actual outside magnetic field B OUT in the vicinity of the magnetometers 26 ), which can then be used to estimate the generic outside magnetic field model B OUT-EST at the second set of magnetometers 26 ′′, as discussed above with respect to equation [8], which can then be solved to accurately estimate the total residual magnetic field B TOT-EST at the second set of magnetometers 26 .′′
- This same process of fitting weighting coefficients may be applied to models using other basis vector fields, such as vector fields comprising sums of sines and cosines or Taylor's series expansions in polynomials.
- Other classes of continuous parametrizations may use sets of basis vector fields that are not mutually orthogonal or that do not span the full space of solutions to Maxwell's equations.
- FIG. 7 one exemplary method 100 of suppressing a total residual magnetic field B OUT will be described.
- the method 100 comprises generating the actuated magnetic field B ACT that at least partially cancels an outside magnetic field B OUT (e.g., via the set of magnetic field actuators 28 of the signal processing unit 20 ), thereby yielding a total residual magnetic field B TOT (step 102 ).
- the actuated magnetic field B ACT is generated in all three dimensions and is uniform, although in alternative embodiments, the actuated magnetic field B ACT may be generated in less three dimensions and may be non-uniform (e.g., a gradient).
- the method 100 further comprises acquiring the total residual magnetic field measurements B TOT-MEAS respectively at a first set of a plurality of detection locations (e.g., from the coarse magnetometers 26 a and/or fine magnetometers 26 b of the signal acquisition unit 20 ) (step 104 ), and estimating the total residual magnetic field B TOT-EST at a second set of a plurality of detection locations (e.g., from the coarse magnetometers 26 a and/or fine magnetometers 26 b of the signal acquisition unit 20 ) based on the total residual magnetic field measurements B TOT-MEAS acquired at the first set of detection locations (step 106 ).
- the first set of detection locations and the second set of detection locations may have no common detection location (meaning that there is no detection location where a total residual magnetic field is both measured and estimated, e.g., no magnetometer 26 in common), may have at least one common detection location (meaning that there is at least one detection location where the total residual magnetic field is both measured and estimated, e.g., at least one magnetometer 26 in common), or all of the first set of detection locations and all of the second set of detection locations may be common (meaning that total residual magnetic field is both measured and estimated at all of the detection locations, e.g., all magnetometers 26 are common).
- the method 100 further comprises controlling the actuated magnetic field B ACT at least partially based on the total residual magnetic field estimates B TOT-EST at the second set of detection locations in a manner that suppresses the total residual magnetic field B TOT at the second set of locations to a baseline level (by cancelling the outside magnetic field B OUT , e.g., via the coarse feedback control loop 50 and/or fine feedback control loop 52 and sending noise-cancelling control signals C to the set of magnetic field actuators 28 of the signal acquisition unit 18 ), such that accuracies of the total residual magnetic field measurements B TOT-MEAS acquired at the second set of locations increase (e.g., the fine magnetometers 26 b of the signal acquisition unit 20 come in-range) (step 108 ).
- the method 100 may be applied to a first set of detection locations where coarse total residual magnetic field measurements B TOT-MEAS are taken and to a second set of detection locations where fine total residual magnetic field measurements B TOT-MEAS are taken.
- one particular method 120 comprises generating the actuated magnetic field B ACT that at least partially cancels an outside magnetic field B OUT (e.g., via the set of magnetic field actuators 28 of the signal processing unit 20 ), thereby yielding a total residual magnetic field B TOT (step 122 ).
- the method 120 further comprises acquiring coarse total residual magnetic field measurements B TOT-MEAS at the first set of detection locations (e.g., from the coarse magnetometers 26 a of the signal acquisition unit 20 ) (step 124 ).
- the method 120 further comprises estimating the total residual magnetic field B TOT-EST at the second set of detection locations (e.g., at the fine magnetometers 26 b of the signal acquisition unit 20 ) based on the coarse total residual magnetic field measurements B TOT-MEAS acquired at the first set of detection locations (step 126 ).
- the method 120 further comprises controlling the actuated magnetic field B ACT at least partially based on the total residual magnetic field estimates B TOT-EST at the second set of detection locations in a manner that at least partially cancels the outside magnetic field B OUT at the second set of detection locations (e.g., via the coarse feedback control loop 50 and sending noise-cancelling control signals C to the set of magnetic field actuators 28 of the signal acquisition unit 20 ), thereby suppressing the total residual magnetic field B TOT at the second set of detection locations (e.g., at the fine magnetometers 26 b of the signal acquisition unit 20 ) to a baseline level, such that accuracies of the fine total residual magnetic field measurements B TOT-MEAS acquired at the second set of detection locations increase (e.g., the fine magnetometers 26 b of the signal acquisition unit 20 come in-range) (step 128 ).
- the method 120 further comprises acquiring the fine total residual magnetic field measurements at the second set of detection locations (e.g., from the fine magnetometers 26 b of the signal acquisition unit 20 ) (step 130 ), estimating the total residual magnetic field B TOT-EST at the second set of detection locations (e.g., at the fine magnetometers 26 b of the signal acquisition unit 20 ) based on the coarse total residual magnetic field measurements B TOT-MEAS acquired at the second set of detection locations (step 132 ), and controlling the actuated magnetic field B ACT at least partially based on the total residual magnetic field estimates B TOT-EST at the second set of detection locations in a manner that further suppresses the total residual magnetic field at the second set of detection locations to a lower level (by further cancelling the outside magnetic field B OUT , e.g., via the fine feedback control loop 52 and sending noise-cancelling control signals C to the set of magnetic field actuators 28 of the signal acquisition unit 18 ) (step 134 ).
- the method further comprises deriving a plurality of MEG signals S MEG respectively from the total residual magnetic field estimates B TOT-EST at the second set of detection locations (e.g., via the signal acquisition unit 18 ) (step 136 ). That is, because the total residual magnetic field measurements B TOT-MEAS respectively at the first set of detection locations total residual magnetic field B TOT contains the MEG magnetic field B MEG from the brain 14 of the user 12 , and thus by inference, the total residual magnetic field estimates B TOT-EST at the second set of detection locations contains the MEG magnetic field B MEG from the brain 14 of the user 12 , the MEG signals S MEG can be extracted from the total residual magnetic field estimates B TOT-EST . The existence and detection location of neural activity in the brain 14 of the user 12 may then be determined based on the MEG signals S MEG (e.g., via the signal processing unit 20 ) (step 138 ).
- another particular method 150 comprises generating the actuated magnetic field B ACT that at least partially cancels an outside magnetic field B OUT , (e.g., via the set of magnetic field actuators 28 of the signal processing unit 20 ), thereby yielding a total residual magnetic field B TOT (step 152 ).
- the method 120 further comprises acquiring measurements of the total residual magnetic field B TOT at a plurality of detection locations.
- the method 150 comprises acquiring coarse total residual magnetic field measurements B TOT-MEAS at the first set of detection locations (e.g., from the coarse magnetometers 26 a of the signal acquisition unit 20 ) (step 154 ), and acquiring fine total residual magnetic field measurements B TOT-MEAS at the second set of detection locations (e.g., from the fine magnetometers 26 b of the signal acquisition unit 20 ) (step 156 ).
- the method 150 further comprises determining accuracies of the fine total residual magnetic field measurements B TOT-MEAS acquired at the second set of detection locations (e.g., by determining whether the fine magnetometers 26 b of the signal acquisition unit 20 are in-range) (step 158 ), and assigning weightings to the fine total residual magnetic field measurements B TOT-MEAS acquired at the second set of detection locations (e.g., by assigning weightings to the fine magnetometers 26 b of the signal acquisition unit 20 ) based on the accuracy determination (step 160 ).
- the method 150 further comprises estimating the total residual magnetic field B TOT-EST at the second set of detection locations (e.g., at the fine magnetometers 26 b of the signal acquisition unit 20 ) based on the coarse total residual magnetic field measurements B TOT-MEAS acquired at the first set of detection locations and total residual magnetic field measurements B TOT-MEAS acquired at the first set of detection locations (step 162 ).
- the method 120 further comprises controlling the actuated magnetic field B ACT at least partially based on the total residual magnetic field estimates B TOT-EST at the second set of detection locations in a manner that suppresses the total residual magnetic field B TOT at the second set of detection locations to a baseline level (by cancelling the outside magnetic field B OUT , e.g., via the coarse feedback control loop 50 and/or fine feedback control loop 52 and sending noise-cancelling control signals C to the set of magnetic field actuators 28 of the signal acquisition unit 18 ), such that accuracies of the fine total residual magnetic field measurements B TOT-MEAS acquired at the second set of detection locations increase (step 164 ).
- the method further comprises deriving a plurality of MEG signals S MEG respectively from the total residual magnetic field estimates B TOT-EST at the second set of detection locations (e.g., via the signal acquisition unit 18 ) (step 166 ).
- the existence and detection location of neural activity in the brain 14 of the user 12 may then be determined based on the MEG signals S MEG (e.g., via the signal processing unit 20 ) (step 168 ).
- one exemplary method 170 of estimating the total residual magnetic field B TOT-EST at the second set of detection locations comprises acquiring the total residual magnetic field measurements B TOT-MEAS at the first set of the detection locations (e.g., from the coarse magnetometers 26 a and/or fine magnetometers 26 b of the signal acquisition unit 18 ) (step 172 ).
- the method 170 further comprises determining a known actuated magnetic field B ACT-KNOWN at the first set of detection locations and the second set of detection locations based on a known profile of the actuated magnetic field actuated magnetic field B ACT and actuation strengths of the actuated magnetic field B ACT (step 174 ).
- the method 170 further comprises generating a parameterized model of the outside magnetic field B MOD-PAR in the vicinity of the first set of detection locations and second set of detection locations based on the total residual magnetic field measurements B TOT-MEAS acquired at the first set of detection locations and the known actuated magnetic field B ACT-KNOWN at the first set of detection locations.
- the parameterized model of the outside magnetic field B MOD-PAR is generated by first generating a generic model of the outside magnetic field B ACT-MOD comprising a plurality of basis functions in the vicinity of the plurality of detection locations (step 176 ), optionally applying Maxwell's equations to the generic outside magnetic field model B ACT-MOD in a manner that constrains generic outside magnetic field model B ACT-MOD by reducing the number of the basis functions (step 178 ).
- the basis functions comprise 0 th order basis functions and 1st order basis functions.
- the basis functions comprise at least one non-linear basis function (e.g., a vector spherical harmonics (VSH) basis function).
- the generic outside magnetic field B ACT-MOD is then parameterized based on the total residual magnetic field measurements B TOT-MEAS acquired at the first set of detection locations and the known actuated magnetic field B ACT-KNOWN at the first set of detection locations, thereby yielding a parameterized outside magnetic field model B MOD-PAR
- the generic outside magnetic field model B ACT-MOD (constrained or unconstrained) is fitted to a difference between the total residual magnetic field measurements B TOT-MEAS acquired at the first set of detection locations and the known actuated magnetic field B ACT-KNOWN at the first set of detection locations (step 180 ).
- fitting the generic outside magnetic field model B ACT-MOD may comprises fitting coefficients of the plurality of basis functions to the difference between the total residual magnetic field measurements B TOT-MEAS acquired at the first set of detection locations and the known actuated magnetic field B ACT-KNOWN at the first set of detection locations, e.g., using a least squares optimization technique.
- the fitted coefficients may then be incorporated into the generic outside magnetic field model B ACT-MOD , thereby yielding the parameterized outside magnetic field model B MOD-PAR .
- the method 170 further comprises estimating the outside magnetic field B OUT-EST at the second set of detection locations based on the parameterized outside magnetic field model B MOD-PAR , and in particular, by substituting second set of detection locations into the parameterized outside magnetic field model B MOD-PAR (step 182 ).
- the method 170 comprises estimating the total residual magnetic field B TOT-EST at the second set of detection locations based on the known actuated magnetic field B ACT-KNOWN at the second set of detection locations and the outside magnetic field estimates B OUT-EST at the second set of detection locations, and in particular, by summing the known actuated magnetic field B ACT-KNOWN at the second set of detection locations and the outside magnetic field estimates B OUT-EST at the second set of detection locations (step 184 ).
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Abstract
Description
Assuming that the set of
Thus, the x-directional component BxOUT-MOD(x, y, z, t) of the magnetic field model {right arrow over (BOUT-MOD)}(x, y, z, t) has a 0th order component that is characterized by the time-varying basis function αx(t) and 1st order spatial components that linearly vary in the space (x, y, and z) and are respectively characterized by time varying basis functions αxx(t)x, αxy(t)y and αxz(t)z; the y-directional component ByOUT-MOD(x, y, z, t) of the magnetic field model {right arrow over (BOUT-MOD)}(x, y, z, t) has a 0th order component that is characterized by the time-varying basis function αy(t) and 1st order spatial components that linearly vary in the space (x, y, and z) and are respectively characterized by time varying basis functions αyx(t)x, αyy(t)y, and αyz(t)z; and the y-directional component BzOUT-MOD(x, y, z, t) of the magnetic field model {right arrow over (BOUT-MOD)} (x, y, z, t) has a 0th order component that is characterized by the time-varying basis function αz(t) and 1st order spatial components that linearly vary in the space (x, y, and z) and are respectively characterized by time varying basis functions αzx(t)x, αzy(t)y, and αzz(t)z.
where {right arrow over (BTOT)}(x, y, z, t) is the true total magnetic field measurement at the first set of
where δ is unknown measurement noise for each
where r is the radius, wi is a basis function, n is the number of basis functions, i is the index for the basis function, ϵ(r) is the remaining error for the part of Maxwell's equations that are not captured by the first n modes, and γi is a weighting coefficient in accordance with:
[13] γ=W†ϕ, where ϕ is a vector of length equal to the number of magnetometers in the first set of
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